TY - JOUR
T1 - Shared differential factors underlying individual spontaneous neural activity abnormalities in major depressive disorder
AU - DIDA-MDD Working Group
AU - Han, Shaoqiang
AU - Tian, Ya
AU - Zheng, Ruiping
AU - Wen, Baohong
AU - Liu, Liang
AU - Liu, Hao
AU - Wei, Yarui
AU - Chen, Huafu
AU - Zhao, Zongya
AU - Xia, Mingrui
AU - Sun, Xiaoyi
AU - Wang, Xiaoqin
AU - Wei, Dongtao
AU - Liu, Bangshan
AU - Huang, Chu Chung
AU - Zheng, Yanting
AU - Wu, Yankun
AU - Chen, Taolin
AU - Cheng, Yuqi
AU - Xu, Xiufeng
AU - Gong, Qiyong
AU - Si, Tianmei
AU - Qiu, Shijun
AU - Lin, Ching Po
AU - Tang, Yanqing
AU - Wang, Fei
AU - Qiu, Jiang
AU - Xie, Peng
AU - Li, Lingjiang
AU - He, Yong
AU - Chen, Yuan
AU - Zhang, Yong
AU - Cheng, Jingliang
N1 - Publisher Copyright:
© The Author(s), 2024.
PY - 2024
Y1 - 2024
N2 - Background. In contemporary neuroimaging studies, it has been observed that patients with major depressive disorder (MDD) exhibit aberrant spontaneous neural activity, commonly quantified through the amplitude of low-frequency fluctuations (ALFF). However, the substantial individual heterogeneity among patients poses a challenge to reaching a unified conclusion. Methods. To address this variability, our study adopts a novel framework to parse individualized ALFF abnormalities. We hypothesize that individualized ALFF abnormalities can be portrayed as a unique linear combination of shared differential factors. Our study involved two large multi-center datasets, comprising 2424 patients with MDD and 2183 healthy controls. In patients, individualized ALFF abnormalities were derived through normative modeling and further deconstructed into differential factors using non-negative matrix factorization. Results. Two positive and two negative factors were identified. These factors were closely linked to clinical characteristics and explained group-level ALFF abnormalities in the two datasets. Moreover, these factors exhibited distinct associations with the distribution of neurotransmitter receptors/transporters, transcriptional profiles of inflammation-related genes, and connectome-informed epicenters, underscoring their neurobiological relevance. Additionally, factor compositions facilitated the identification of four distinct depressive subtypes, each characterized by unique abnormal ALFF patterns and clinical features. Importantly, these findings were successfully replicated in another dataset with different acquisition equipment, protocols, preprocessing strategies, and medication statuses, validating their robustness and generalizability. Conclusions. This research identifies shared differential factors underlying individual spontaneous neural activity abnormalities in MDD and contributes novel insights into the heterogeneity of spontaneous neural activity abnormalities in MDD.
AB - Background. In contemporary neuroimaging studies, it has been observed that patients with major depressive disorder (MDD) exhibit aberrant spontaneous neural activity, commonly quantified through the amplitude of low-frequency fluctuations (ALFF). However, the substantial individual heterogeneity among patients poses a challenge to reaching a unified conclusion. Methods. To address this variability, our study adopts a novel framework to parse individualized ALFF abnormalities. We hypothesize that individualized ALFF abnormalities can be portrayed as a unique linear combination of shared differential factors. Our study involved two large multi-center datasets, comprising 2424 patients with MDD and 2183 healthy controls. In patients, individualized ALFF abnormalities were derived through normative modeling and further deconstructed into differential factors using non-negative matrix factorization. Results. Two positive and two negative factors were identified. These factors were closely linked to clinical characteristics and explained group-level ALFF abnormalities in the two datasets. Moreover, these factors exhibited distinct associations with the distribution of neurotransmitter receptors/transporters, transcriptional profiles of inflammation-related genes, and connectome-informed epicenters, underscoring their neurobiological relevance. Additionally, factor compositions facilitated the identification of four distinct depressive subtypes, each characterized by unique abnormal ALFF patterns and clinical features. Importantly, these findings were successfully replicated in another dataset with different acquisition equipment, protocols, preprocessing strategies, and medication statuses, validating their robustness and generalizability. Conclusions. This research identifies shared differential factors underlying individual spontaneous neural activity abnormalities in MDD and contributes novel insights into the heterogeneity of spontaneous neural activity abnormalities in MDD.
KW - amplitude of low-frequency fluctuations
KW - dimension
KW - heterogeneity
KW - major depressive disorder
KW - normative modeling
UR - http://www.scopus.com/inward/record.url?scp=85210945608&partnerID=8YFLogxK
U2 - 10.1017/S0033291724002617
DO - 10.1017/S0033291724002617
M3 - Article
AN - SCOPUS:85210945608
SN - 0033-2917
JO - Psychological Medicine
JF - Psychological Medicine
ER -